论文标题
关于乘客和频率
On Ridership and Frequency
论文作者
论文摘要
甚至在COVID-19大流行开始之前,美国的公交乘车率就达到了1973年以来的最低水平。如果运输机构希望扭转这一趋势,他们必须了解其服务分配政策如何影响乘客。随着时间的流逝,本文是最早以超本地级别建模乘车趋势的之一。开发了Poisson固定效应模型,以评估工作日的乘客弹性使用波特兰,迈阿密,明尼阿波利斯/ST-PAUL的乘客数量数据,以及2012年至2018年之间的亚特兰大。在每个代理机构中,乘客在观察到一个点的路线分段之间的频率是弹性的。换句话说,在每辆车旅行的乘客方面,最常见的路线已经是最有生产力的。然而,当观察每个路线段内的变化时,乘客量是无弹性的。预计每次额外的车辆旅行将产生的乘车人数少于路线上的普通公共汽车。在四个代理商中的三个中,弹性是先前频率的降低功能,这意味着低频路线对频率变化最敏感。本文可以帮助过境机构预测整个网络中转移服务的边际影响。随着乘客数量数据的质量和可用性的提高,本文可以作为探索公交乘车动态的方法论基础。
Even before the start of the COVID-19 pandemic, bus ridership in the United States had attained its lowest level since 1973. If transit agencies hope to reverse this trend, they must understand how their service allocation policies affect ridership. This paper is among the first to model ridership trends on a hyper-local level over time. A Poisson fixed-effects model is developed to evaluate the ridership elasticity to frequency on weekdays using passenger count data from Portland, Miami, Minneapolis/St-Paul, and Atlanta between 2012 and 2018. In every agency, ridership is found to be elastic to frequency when observing the variation between individual route-segments at one point in time. In other words, the most frequent routes are already the most productive in terms of passengers per vehicle-trip. When observing the variation within each route-segment over time, however, ridership is inelastic; each additional vehicle-trip is expected to generate less ridership than the average bus already on the route. In three of the four agencies, the elasticity is a decreasing function of prior frequency, meaning that low-frequency routes are the most sensitive to changes in frequency. This paper can help transit agencies anticipate the marginal effect of shifting service throughout the network. As the quality and availability of passenger count data improve, this paper can serve as the methodological basis to explore the dynamics of bus ridership.